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Learning Gait of Quadruped Robot without Prior Knowledge of the Environment 被引量:4
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作者 XU Tao CHEN Qijun 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2012年第5期1068-1074,共7页
Walking is the basic skill of a legged robot, and one of the promising ways to improve the walking performance and its adaptation to environment changes is to let the robot learn its walking by itself. Currently, most... Walking is the basic skill of a legged robot, and one of the promising ways to improve the walking performance and its adaptation to environment changes is to let the robot learn its walking by itself. Currently, most of the walking learning methods are based on robot vision system or some external sensing equipment to estimate the walking performance of certain walking parameters, and therefore are usually only applicable under laboratory condition, where environment can be pre-defined. Inspired by the rhythmic swing movement during walking of legged animals and the behavior of their adjusting their walking gait on different walking surfaces, a concept of walking rhythmic pattern(WRP) is proposed to evaluate the walking specialty of legged robot, which is just based on the walking dynamics of the robot. Based on the onboard acceleration sensor data, a method to calculate WRP using power spectrum in frequency domain and diverse smooth filters is also presented. Since the evaluation of WRP is only based on the walking dynamics data of the robot's body, the proposed method doesn't require prior knowledge of environment and thus can be applied in unknown environment. A gait learning approach of legged robots based on WRP and evolution algorithm(EA) is introduced. By using the proposed approach, a quadruped robot can learn its locomotion by its onboard sensing in an unknown environment, where the robot has no prior knowledge about this place. The experimental result proves proportional relationship exits between WRP match score and walking performance of legged robot, which can be used to evaluate the walking performance in walking optimization under unknown environment. 展开更多
关键词 quadruped locomotion gait learning evolution algorithm
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基于深度强化学习的四足机器人运动控制发展现状与展望 被引量:15
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作者 张伟 谭文浩 李贻斌 《山东大学学报(医学版)》 CAS 北大核心 2020年第8期61-66,共6页
受类脑计算启发的深度强化学习在人工智能、机器人等诸多领域中都取得了巨大的成功,该方法通过结合深度学习与强化学习获得了优异的场景感知能力与任务决策能力。本文首先介绍了两类应用较为广泛的深度强化学习方法及其基本原理,并通过... 受类脑计算启发的深度强化学习在人工智能、机器人等诸多领域中都取得了巨大的成功,该方法通过结合深度学习与强化学习获得了优异的场景感知能力与任务决策能力。本文首先介绍了两类应用较为广泛的深度强化学习方法及其基本原理,并通过回顾深度强化学习在四足机器人运动控制上的应用现状讨论了该方法的研究进展,最后通过总结现有方法及腿足机器人控制特点,对深度强化学习在四足机器人上的应用前景进行了展望。 展开更多
关键词 机器学习 深度强化学习 四足机器人 运动控制 步态学习
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四腿机器人步态参数自动进化研究与实现 被引量:11
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作者 许涛 陈启军 《机器人》 EI CSCD 北大核心 2009年第1期72-76,81,共6页
采用进化算法和基于自主视觉的适应度评估方法,实现了四腿机器人在RoboCup机器人足球比赛现场的行走步态在线自动进化.我们引入内推法作为交叉方法,利用PC基站进行进化算法计算和流程主控,并采用了一些学习时间缩减策略.实现了进化学习... 采用进化算法和基于自主视觉的适应度评估方法,实现了四腿机器人在RoboCup机器人足球比赛现场的行走步态在线自动进化.我们引入内推法作为交叉方法,利用PC基站进行进化算法计算和流程主控,并采用了一些学习时间缩减策略.实现了进化学习的连续性和可扩展性,使得学习过程可以在40-60 min内完成,这样就能在比赛现场对ERS-7四足机器人进行行走再学习,提高了行走控制的适应性.算泫最终结果使ERS-7型四足机器人的行走速度从27 cm/s提升到43 cm/s. 展开更多
关键词 四腿机器人 步态学习 进化算法 行走控制
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